Title : ( Insulin infusion rate control in type 1 diabetes patients using information-theoretic model predictive control )
Authors: sahar zadeh birjandi , Seyed Kamal Hosseini Sani , Naser Pariz ,Access to full-text not allowed by authors
Abstract
The present paper examines the glucose regulation system in patients with type 1 diabetes. To this end, the nonlinear Bergman\\\'s minimal model with parametric uncertainty, which represents this system, is converted to a fractional-order model using Caputo’s definition. As the recent literature suggests, the noise in the interstitial glucose concentration continuous control sensors is considered non-Gaussian. With this in mind, first an optimal non-fragile observer is designed for a Lipschitz nonlinear fractional-order system including parametric uncertainty and input disturbance in order to estimate the unknown states. Second, feedback linearization method for nonlinear fractional-order system with parametric uncertainty is used, after which the linearized system is used to design controller for diabetes mellitus patients. Third, robust fractional model predictive control (RFMPC) with a minimax optimization approach is presented for closed-loop insulin delivery. Finally, the performance of the proposed controller under non-Gaussian measurement noise is enhanced with a suitable choice of a cost function based on generalized correntropy (GC), whereas the performance of a mean square error (MSE)-based controller is simulated. The results indicate that not only the proposed controller performs better under non-Gaussian conditions but also it effectively recovers and maintains the glucose concentration within the desired range by appropriately infusing insulin under parametric uncertainty and meal disturbances.
Keywords
, Model predictive control Fractional order Bergman’s minimal model Fractional, order observer Generalized correntropy criterion@article{paperid:1093367,
author = {Zadeh Birjandi, Sahar and Hosseini Sani, Seyed Kamal and Pariz, Naser},
title = {Insulin infusion rate control in type 1 diabetes patients using information-theoretic model predictive control},
journal = {Journal of Biomedical Signal Processing and Control},
year = {2022},
volume = {76},
month = {July},
issn = {1746-8094},
pages = {103635--103635},
numpages = {0},
keywords = {Model predictive control
Fractional order
Bergman’s minimal model
Fractional-order observer
Generalized correntropy criterion},
}
%0 Journal Article
%T Insulin infusion rate control in type 1 diabetes patients using information-theoretic model predictive control
%A Zadeh Birjandi, Sahar
%A Hosseini Sani, Seyed Kamal
%A Pariz, Naser
%J Journal of Biomedical Signal Processing and Control
%@ 1746-8094
%D 2022